废水处理过程中生化需氧量的预测建模:改善出水水质的通用机器学习方法

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Offir Inbar, Moni Shahar and Dror Avisar
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引用次数: 0

摘要

生化需氧量(BOD)是衡量废水质量最敏感、最基本的指标之一。然而,目前的生化需氧量检测方法需要耗费大量的精力和时间,导致污水处理过程中出现管理和操作失误,从而产生劣质污水,对公众健康和安全构成威胁。利用先进的机器学习 (ML) 方法,我们开发了可通用的生化需氧量预测模型,该模型基于来自以色列全国 30 家污水处理厂 (WWTP) 的独特中央集成数据库。该模型基于现场传感器或传统分析设备测量到的易于检索的水参数。在这项工作中,对三种不同的 ML 算法(随机森林 (RF)、支持向量机和梯度树增强)进行了研究和比较。经过优化的 RF 模型在预测处理过程不同阶段的总生化需氧量方面取得了最佳结果,R2 为 0.91,RMSE 为 8.58。建模的三个关键特征是化学需氧量、总悬浮固体和凯氏总氮。然后,我们介绍了一种预测污水中生化需氧量的方法,重点是二元分类预测,以符合法规要求。对于 BOD > 9 mg L-1 的预测阈值,回收率达到 0.89。这些结果表明,该模型有可能成为以色列乃至全球污水处理厂生化需氧量预测的通用解决方案。该方法可作为废水中生化需氧量监测和管理传感器的一部分,有效减少常规实验室检测之间的时间间隔。本文探讨的基本挑战具有重要的全球意义,尤其是在高质量废水回用需求预计将大幅增加的时代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predictive modeling of BOD throughout wastewater treatment: a generalizable machine learning approach for improved effluent quality

Predictive modeling of BOD throughout wastewater treatment: a generalizable machine learning approach for improved effluent quality

Predictive modeling of BOD throughout wastewater treatment: a generalizable machine learning approach for improved effluent quality

Biochemical oxygen demand (BOD) is one of the most sensitive and essential indicators of wastewater quality. However, today, BOD detection methods require considerable effort and time, resulting in management and operational errors during the wastewater-treatment process which leads to the production of poor-quality effluent that poses a threat to public health and safety. Using advanced machine learning (ML) methods, we developed generalizable BOD prediction model based on a unique, centrally integrated database from 30 wastewater-treatment plants (WWTP) across Israel. The model is based on easily retrieved water parameters measured by on-site sensors or conventional analytical devices. In this work, three different ML algorithms were examined and compared, random forest (RF), support vector machine, and gradient tree boosting. The optimized RF model reached the best results, R2 of 0.91 and RMSE of 8.58 in predicting the total BOD at different stages of the treatment process. The three key features for modeling were chemical oxygen demand, total suspended solids, and total Kjeldahl nitrogen. We then present an approach to predict BOD in effluent, focusing on binary classification predictions for regulatory compliance. For a prediction threshold of BOD > 9 mg L−1, a recall of 0.89 was achieved. These results demonstrate the potential of the model to be a generalized solution for BOD predictions in WWTP across Israel, and possibly worldwide. This method can be used as a part of a sensor for BOD monitoring and management in wastewater, effectively minimizing the time gaps between routine lab testing. The fundamental challenge addressed herein has important global relevance, especially in an era in which the demand for high-quality wastewater reuse is expected to increase dramatically.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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